Applying machine learning approach to predict students’ performance in higher educational institutions

Author:

Yakubu Mohammed Nasiru,Abubakar A. Mohammed

Abstract

Purpose Academic success and failure are relevant lifelines for economic success in the knowledge-based economy. The purpose of this paper is to predict the propensity of students’ academic performance using early detection indicators (i.e. age, gender, high school exam scores, region, CGPA) to allow for timely and efficient remediation. Design/methodology/approach A machine learning approach was used to develop a model based on secondary data obtained from students’ information system in a Nigerian university. Findings Results revealed that age is not a predictor for academic success (high CGPA); female students are 1.2 times more likely to have high CGPA compared to their male counterparts; students with high JAMB scores are more likely to achieve academic success, high CGPA and vice versa; students from affluent and developed regions are more likely to achieve academic success, high CGPA and vice versa; and students in Years 3 and 4 are more likely to achieve academic success, high CGPA. Originality/value This predictive model serves as a classifier and useful strategy to mitigate failure, promote success and better manage resources in tertiary institutions.

Publisher

Emerald

Subject

Computer Science (miscellaneous),Social Sciences (miscellaneous),Theoretical Computer Science,Control and Systems Engineering,Engineering (miscellaneous)

Reference72 articles.

1. Assessment of boko haram insurgents’ threats to educational development in the northeast Nigeria: the way forward;Assessment,2020

2. Data mining approach to predicting the performance of first year student in a university using the admission requirements;Education and Information Technologies,2019

3. Toward an improved learning process: the relevance of ethnicity to data mining prediction of students’ performance;SN Applied Sciences,2020

4. Gender disparity in academic performance of students in the faculty of agriculture and forestry, university of Ibadan, Oyo state;International Journal of Agricultural Economics and Rural Development,2017

5. The prediction of students’ academic performance using classification data mining techniques;Applied Mathematical Sciences,2015

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